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Composite Multi-Lobe Descriptor for Cross Spectral Face Recognition: Matching Active IR to Visible Light Images

机译:用于多光谱人脸识别的复合多瓣描述符:将主动红外与可见光图像匹配

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Matching facial images across electromagnetic spectrum presents a challenging problem in the field of biometrics and identity management. An example of this problem includes cross spectral matching of active infrared (IR) face images or thermal IR face images against a dataset of visible light images. This paper describes a new operator named Composite Multi-Lobe Descriptor (CMLD) for facial feature extraction in cross spectral matching of near-infrared (NIR) or short-wave infrared (SWIR) against visible light images. The new operator is inspired by the design of ordinal measures. The operator combines Gaussian-based multi-lobe kernel functions, Local Binary Pattern (LBP), generalized LBP (GLBP) and Weber Local Descriptor (WLD) and modifies them into multi-lobe functions with smoothed neighborhoods. The new operator encodes both the magnitude and phase responses of Gabor niters. The combining of LBP and WLD utilizes both the orientation and intensity information of edges. Introduction of multi-lobe functions with smoothed neighborhoods further makes the proposed operator robust against noise and poor image quality. Output templates are transformed into histograms and then compared by means of a symmetric Kullback-Leibler metric resulting in a matching score. The performance of the multi-lobe descriptor is compared with that of other operators such as LBP, Histogram of Oriented Gradients (HOG), ordinal measures, and their combinations. The experimental results show that in many cases the proposed method, CMLD, outperforms the other operators and their combinations. In addition to different infrared spectra, various standoff distances from close-up (1.5 m) to intermediate (50 m) and long (106 m) are also investigated in this paper. Performance of CMLD is evaluated for of each of the three cases of distances.
机译:在电磁频谱上匹配面部图像在生物识别和身份管理领域提出了一个具有挑战性的问题。此问题的示例包括有源红外(IR)面部图像或热IR面部图像与可见光图像数据集的交叉光谱匹配。本文介绍了一种新的算子,称为复合多叶描述符(CMLD),用于在可见光图像的近红外(NIR)或短波红外(SWIR)交叉光谱匹配中提取面部特征。新操作员的灵感来自于顺序测量的设计。运算符将基于高斯的多瓣内核函数,本地二进制模式(LBP),广义LBP(GLBP)和Weber本地描述符(WLD)组合在一起,并将它们修改为具有平滑邻域的多瓣函数。新的运算符对Gabor niters的幅度和相位响应进行编码。 LBP和WLD的结合利用了边缘的方向和强度信息。具有平滑邻域的多瓣函数的引入进一步使所提出的算子对噪声和较差的图像质量具有鲁棒性。输出模板被转换为直方图,然后通过对称Kullback-Leibler度量进行比较,从而得出匹配分数。将多瓣描述符的性能与其他算子(例如LBP,定向梯度直方图(HOG),有序度量及其组合)的性能进行了比较。实验结果表明,在许多情况下,所提出的方法CMLD优于其他算子及其组合。除了不同的红外光谱外,本文还研究了从近距离(1.5 m)到中间(50 m)和长距离(106 m)的各种对峙距离。针对三种距离情况分别评估CMLD的性能。

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